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Remote sensing of boreal forest terrain: Sub-pixel scale mixture analysis of land cover and biophysical parameters at forest stand and regional scales.

机译:北方森林地形的遥感:林分和区域尺度的土地覆盖率和生物物理参数的亚像素尺度混合分析。

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Increasing concentrations of atmospheric carbon dioxide and other greenhouse gases have focused attention on the global carbon cycle. Predicted climate change scenarios indicate the release of large stores of organic carbon in boreal forest regions could have profound ecological, cultural and economic impacts on agricultural, boreal and Arctic tundra zones. Remote sensing provides the only comprehensive information to monitor such large tracts of land, however, conventional NDVI vegetation index approaches have been shown to be unreliable for extracting required biophysical parameters such as biomass, leaf area index and productivity. In this research. spectral mixture analysis (SMA) and geometric-optical reflectance models provide sub-pixel scale forest information such as sunlit canopy, background and shadow fractions which yield improved biophysical estimates when compared to NDVI. This was validated first for individual forest stands using the NASA C scOVER data set from the Superior National Forest, Minnesota USA. Best results were obtained from shadow function using a spheroid based reflectance model with corrections for mutual shadowing and solar zenith angle variations. Following this, a regional scale methodology was implemented in the Boreal Ecosystem Atmosphere Study (B scOREAS) which coupled canopy reflectance models, spectral mixture analysis, and a powerful evidential reasoning classifier into an integrated, physically based land cover and biophysical algorithm (the M{dollar}oplus{dollar}P software package). Field spectrometer data processed to end-member reflectance and stand level tree geometry were input to canopy optical models to produce spectral trajectories of reflectance and forest scene components over a full range of stand densities. These trajectories were input to the new M{dollar}oplus{dollar}P software to produce land cover and sub-pixel scale outputs for predicting biophysical parameters. Improved classification accuracies and biophysical estimates were obtained compared to conventional approaches, with a potential shown for estimating tree height and stem diameter.
机译:大气中二氧化碳和其他温室气体浓度的增加已将注意力集中在全球碳循环上。预测的气候变化情景表明,在北方森林地区释放大量有机碳可能会对农业,北方和北极冻原带产生深远的生态,文化和经济影响。遥感提供了唯一全面的信息来监测如此大的土地,但是,传统的NDVI植被指数方法已显示出提取所需的生物物理参数(例如生物量,叶面积指数和生产力)不可靠。在这项研究中。光谱混合分析(SMA)和几何光学反射率模型可提供亚像素级森林信息,例如日光冠层,背景和阴影部分,与NDVI相比,它们可改善生物物理估计。首先使用来自美国明尼苏达州高级国家森林的NASA C scOVER数据集对单个林分进行了验证。使用基于椭球体的反射模型对阴影函数获得最佳结果,该模型对相互的阴影和太阳天顶角变化进行了校正。此后,在北方生态系统大气研究(B scOREAS)中实施了区域尺度的方法,该方法将树冠反射率模型,光谱混合物分析和强大的证据推理分类器结合到了基于物理的集成土地覆盖和生物物理算法中(M { dollar} oplus {dollar} P软件包)。经过处理的末端成员反射率和林分树几何形状的现场光谱仪数据被输入到冠层光学模型中,以在整个林分密度范围内产生反射率和森林场景成分的光谱轨迹。这些轨迹被输入到新的M {dollar} oplus {dollar} P软件中,以产生土地覆盖率和亚像素尺度输出,以预测生物物理参数。与常规方法相比,获得了改进的分类精度和生物物理估计,并显示了估计树高和茎直径的潜力。

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